Handwritten Word Verification by SVM-Based Hypotheses Re-scoring and Multiple Thresholds Rejection

Frontiers in Handwriting Recognition(2010)

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摘要
In the field of isolated handwritten word recognition, the development of verification systems that optimize the trade-off between performance and reliability is still an active research topic. To minimize the recognition errors, usually, a verification system is used to accept or reject the hypotheses output by an existing recognition system. In this paper, a novel verification architecture is presented. In essence, the recognition hypotheses, re-scored by a set of the support vector machines, are validated by a verification mechanism based on multiple rejection thresholds. In order to tune these (class-dependent) rejection thresholds, an algorithm based on dynamic programming is proposed which focus on maximizing the recognition rate for a given prefixed error rate. Preliminary reported results of experiments carried out on RIMES database show that this approach performs equal or superior to other state-of-the-art rejection methods.
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关键词
handwritten word verification,verification system,recognition hypothesis,novel verification architecture,recognition rate,multiple rejection threshold,recognition error,rejection threshold,verification mechanism,isolated handwritten word recognition,svm-based hypotheses,multiple thresholds rejection,existing recognition system,formal verification,support vector machine,error rate,support vector machines,erbium,hidden markov models,dynamic programming,handwriting recognition,tuning
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